Entropy based Detection approach for Micro-UAV and Classification using Machine Learning

Srihasam Mahesh Kaushik, Vuddagiri Chaitanya, Parasuramuni Kiran Kumar, Mohd Musaddiq Ahmed, Swetha Namburu
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Abstract

In this paper, we explore the techniques for detection and classification of Unmanned Aerial Vehicles (UAVs) using statistical features of the remote controller Radio Frequency (RF) signals in the presence of environmental noise. In the detection mechanism, the RF signal is transformed into Wavelet domain to filter out noise as well as to reduce computational cost. A kernel entropy based approach is used to partition the RF signal into bins and detect the presence of UAV. Unlike Conventional approaches, we compute the energy transient of signal from the Short Time Fourier Transform (STFT) coefficients obtained from Spectrogram of RF signal. Further, the higher order statistical features of energy transient signal are derived and ranked using Neighborhood Component Analysis (NCA)to select notable features for reducing the computational overhead. Finally, the significant features are used to train machine learning algorithm for classification. The algorithms are trained and tested using MPACT DroneRC Dataset containing 50 RF signals from each of the 15 different micro-UAV controllers. The dataset is partitioned with train to test ratio of 4:1 i.e., 80% of dataset is used for training and 20% for testing the algorithm. The k- Nearest Neighbor (kNN) algorithm with NCA classifies all micro-UAVs with an accuracy of 96.66%. The detection technique is also simulated for different Signal to Noise Ratio (SNR) levels and outcomes are reported.
基于熵的微型无人机检测方法及机器学习分类
在本文中,我们探索了在存在环境噪声的情况下,利用遥控器射频(RF)信号的统计特征对无人机(uav)进行检测和分类的技术。在检测机制中,将射频信号变换成小波域,以滤除噪声并降低计算成本。采用基于核熵的方法对射频信号进行分仓,检测无人机的存在。与传统方法不同,我们从射频信号的频谱图中得到的短时傅立叶变换(STFT)系数计算信号的能量瞬态。在此基础上,推导了能量暂态信号的高阶统计特征,并利用邻域分量分析(NCA)对其进行排序,选择显著特征以减少计算开销。最后,利用显著特征训练机器学习算法进行分类。算法使用MPACT DroneRC数据集进行训练和测试,该数据集包含来自15种不同微型无人机控制器的50个RF信号。数据集的训练与测试比例为4:1,即80%的数据集用于训练,20%用于测试算法。基于NCA的kNN算法对所有微型无人机进行分类,准确率达到96.66%。本文还对不同信噪比(SNR)水平下的检测技术进行了仿真,并报道了结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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